Publication | Open Access
Fitting Laguerre tessellation approximations to tomographic image data
33
Citations
42
References
2016
Year
The analysis of polycrystalline materials benefits greatly from accurate quantitative descriptions of their grain structures. Laguerre tessellations approximate such grain structures very well. However, it is a quite challenging problem to fit a Laguerre tes-sellation to tomographic data, as a high-dimensional optimization problem with many local minima must be solved. In this paper, we formulate a version of this optimization problem that can be solved quickly using the cross-entropy method, a robust stochastic optimization technique that can avoid becoming trapped in local minima. We demon-strate the effectiveness of our approach by applying it to both artificially generated and experimentally produced tomographic data.
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